M. Zellagui, Adel Lasmari, A. Alaboudy, Samir Settoul, H. Hassan
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引用次数: 2
摘要
:最近,人们经常对将分布式发电机(DG)纳入电气元启发式搜索和优化算法感兴趣,以处理约束并获得最佳DG位置和大小。本文提出了一种有效的优化技术,将多个DG单元优化分配到RDS中。所提出的优化方法考虑了配电网中基于太阳能光伏(PV)的DG单元的集成。它基于多目标函数(MOF),旨在最大化净节能水平(NSL)、电压偏差水平(VDL)、有功功率损耗水平(APLL)、环境污染减少水平(EPRL)和短路水平(SCL)。所提出的算法使用了各种惯性权重粒子群优化(PSO)策略,并将其应用于标准IEEE 69总线系统和实际的205总线阿尔及利亚配电系统。所提出的这种复杂多目标函数的方法和设计最终将在配电网的技术、经济和环境方面做出相当大的改进。研究发现,EIW-PSO算法在各种数量上都能达到最大目标,是应用效果最好的算法;在IEEE 69总线测试系统中安装DG单元的情况下,APLL、EPRL和VDL分别为75.8359%、28.9642%和64.2829%。对于相同数量的DG机组,EIW-PSO与Adrar City 205总线测试系统的性能显著提高;数值上,APLL、EPRL和VDL分别为72.3080%、22.2027%和63.6963%。本研究的仿真结果证明,所提出的算法在固定最优DG设置方面表现出更高的能力和效率。
Enhancing energy efficiency for optimal multiple photovoltaic distributed generators integration using inertia weight control strategies in PSO algorithms
: Recently, interest in incorporating distributed generators (DGs) into electrical meta-heuristic search and optimization algorithms have been frequently developed to handle the constraints and obtain the optimal DG location and size. This paper proposes an efficient optimi zation technique to optimally allocate multiple DG units into a RDS. The proposed optimization method considers the integration of solar photovoltaic (PV) based DG units in power distribution networks. It is based on multi-objective function (MOF) that aims to maximize the net saving level (NSL), voltage deviation level (VDL), active power loss level (APLL), environmental pollution reduction level (EPRL), and short circuit level (SCL). The proposed algorithms using various strategies of inertia weight particle swarm optimization (PSO) are applied on the standard IEEE 69-bus system and a real 205-bus Algerian distribution system. The proposed approach and design of such a complicated multi-objective functions are ultimately to make considerable improvements in the technical, economic, and environmental aspects of power distribution networks. It was found that EIW-PSO is the best applied algorithm as it achieves the maximum targets on various quantities; it gives 75.8359%, 28.9642%, and 64.2829% for the APLL, EPRL, and VDL, respectively, with DG units’ installation in the IEEE 69-bus test system. For the same number of DG units, EIW-PSO gives remarkable improved performance with the Adrar City 205-bus test system; numerically, it shows 72.3080%, 22.2027%, and 63.6963% for the APLL, EPRL, and VDL, respectively. The simulation results of this study prove that the proposed algorithms exhibit higher capability and efficiency in fixing the optimum DG settings.